Breast tomosynthesis with display of highlighted suspected calcifications

ABSTRACT

Systems and methods that facilitate the presentation and assessment of selected features in projection and/or reconstructed breast images, such as calcifications that meet selected criteria of size, shape, presence in selected slice images, distribution of pixels that could be indicative of calcification relative to other pixels or of other image features of clinical interest.

REFERENCE TO RELATED APPLICATIONS

This application is related to earlier-filed applications Ser. Nos. 11/604,069, 11/271,050, 11/059,282, 10/723,486, and 10/305,480 filed, respectively, on Nov. 24, 2006, Nov. 10, 2005, Feb. 16, 2005, Nov. 26, 2003, and Nov. 27, 2002, and is related to PCT applications PCT/US2005/41941 and PCT2005/42613 filed, respectively, on Nov. 15 and 23, 2005. This patent specification hereby incorporates by reference the contents of each of the earlier-filed patent applications.

FIELD

This patent specification pertains to x-ray tomosynthesis, and more specifically to techniques and equipment for acquiring, processing, storing and displaying tomosynthesis images, including tomosynthesis projection images and tomosynthesis reconstructed images. An important aspect of this patent specification pertains to identifying and highlighting suspected calcifications in displays of tomosynthesis images.

BACKGROUND AND SUMMARY OF THE DISCLOSURE

X-ray mammography remains a well-established technology, and x-ray tomosynthesis of the breast has been developed recently as discussed in the earlier-filed patent applications identified above. Clinical testing of tomosynthesis systems has been carried out, and the assignee of this patent specification, Hologic, Inc., has demonstrated at trade shows in this country a fused, multimode mammography/tomosynthesis system that takes either or both types of images, either in single or multiple compressions/immobilizations of the breast. Dedicated breast tomosynthesis systems also have been proposed.

Tomosynthesis as used in the systems and methods disclosed in this patent specification typically involves acquiring a plurality of tomosynthesis projection images Tp at respective angles relative to the breast, and using information describing at least these images Tp (or some of the Tp images) to reconstruct a plurality of tomosynthesis reconstructed images Tr representative of respective breast slices that have selective thicknesses and orientations and correspond to respective sections through or slices of the breast that typically are but need not be planar. For example, the slices can be curved in 3D space. In addition, conventional x-ray mammography images Mp can be acquired, in the same procedure that acquires the Tp images of a breast or in a different procedure and in the same or different compressions of the breast, and may be used in addition to the Tp images or in place of some of the Tp images, in reconstructing Tr images.

Mp images can be processed by various techniques that draw attention to selected portions or features of these images, such as CAD (computer aided detection) techniques that analyze the images to identify likely abnormalities and place markers on a breast image or representation that identify the location and in some cases the type or other information about the likely abnormalities. Some of the parent applications identified above describe applying CAD analysis to Tr and/or Tp images as well, or as an alternative or an adjunct to applying CAD to Mp images, and also describe how to improve the presentations of Tp and/or Tr images (collectively referred to here as T images), Mp images, and CAD and/or other information about the images to make the review by health professionals more effective and efficient.

CAD application to Mp images also is a well-established technology. See, for example, the mammography CAD products offered by R2 Technology, Inc. of Sunnyvale, Calif. and Patent Publications US 2002/0097902 and US 2004/0100476 and U.S. Pat. Nos. 5,970,164, and 6,630,937. In addition to the disclosure of applying CAD to Tp and Tr images in the related applications identified above, U.S. Pat. No. 6,748,044 discusses applying CAD to tomosynthesis images and U.S. Pat. No. 7,149,335 discusses detecting microcalcifications in tomosynthesis images and subtracting background to enhance visibility of the detected microcalcifications. Also possibly relevant to state-of-the-art may be US20030194121A1, U.S. Pat. No. 6,748,044, US20030215120A1, US20050002550A1, US20060269114A1, US20050089205A1, US20050113961A1, U.S. Pat. No. 7,142,633, US20060067473A1, US20060210131A1, US20070003117A1, US20070003118A1, US20070014448A1, US20070052700A1, US20070076928A1. The patents and publication identified in this paragraph also are incorporated by reference in this patent specification.

As more information about the breast becomes available from imaging, an important challenge is to present such information to the health professional effectively and efficiently such that screening for abnormalities can be done thoroughly and effectively, and yet in a reasonable time to be practical, and diagnostic assessment can also be facilitated. For a film mammographic study there usually are four films of the patient's breasts (at least for studies done in the U.S.A.), two CC views and 2 MLO views, that typically can be examined within a few minutes. However, with digital images and particularly tomosynthesis images Tp and Tr, there can be dozens of images and each can be viewed within different windows of pixel values centered at different levels of pixel values. Unless suitable display techniques are developed, information that is in the images may not be fully appreciated or utilized and/or the examination time may become so long as to be impractical, particularly for screening asymptomatic patients but also possibly for diagnostic or other purposes. This patent specification is directed to providing tomosynthesis and like images in a manner that would facilitate extracting useful information from them in a reasonable time.

In this patent specification, the notation Mp refers to a conventional mammogram, which is a two-dimensional x-ray projection image of a breast; the term Mp encompasses both a digital image as acquired by a flat panel detector or another imaging device and the image after conventional processing to prepare it for display to a health professional or for further processing or for storage, e.g. in the PACS system of a hospital or another institution. Mp also encompasses digitized film/screen mammograms. Tp refers to an image that is similarly two-dimensional but is taken at a respective tomosynthesis angle between the breast and the origin of the imaging X-rays (typically the focal spot of an X-ray tube), and also encompasses the image as acquired as well as the image after being processed for display or for some other use. Tr refers to an image that is reconstructed from images Tp, for example in the manner described in said earlier-tiled patent applications, and represents a slice of the breast essentially as it would appear in a projection X-ray image of that slice at any desired angle, not only at an angle used for Tp or Mp images. In addition, a Tr image can represent a slice that conforms to any desired surface such as a flat or curved plane. Moreover, the process of reconstructing Tr images can use Mp images in addition to using Tp images or instead of one or more Tp images. The terms Tp, Tr and Mp also encompasses information, in whatever form, that is sufficient to describe such an image for display, further processing, or storage. The images Mp, Tp and Tr typically are in digital form before being displayed, and can be defined by information identifying properties of each pixel in a two-dimensional array of pixels, although other ways to describe the images can be used as well or instead. The pixel values typically relate to respective measured or estimated or computed responses to X-rays of corresponding volumes in the breast (voxels or columns of tissue). A Tr image can represents a thin slice of a breast, in which case it may consist of pixel values representing respective voxels (volume elements) of the breast that are in a single layer or a few layers transverse to the direction of the x-ray beam, or a Tr image may represent a thicker slice of the breast, in which case the pixel values of the thick-slice Tr image can represent columns of tissue along the direction of the x-ray beam and are calculated using known techniques such as, without limitation, a normalized projection of the pixels of several contiguous thin-slice images onto an image plane, a MIP (maximum intensity projection), or some other way of combining the pixel values representing several thin-slice images. As a non-limiting example, a thin-slice Tr image can represent a 1 mm thick slice of the imaged breast and a thick-slice Tr image can represent a 5-20 mm thick slice of the breast. Thus, when a breast is compressed for x-ray imaging to a thickness of 5-6 cm, there can be 50-60 thin-slice Tr images and 3-12 thick-slice Tr images.

Microcalcifications seen in breast images are considered important clues in screening and/or diagnosis, and prior proposals have been directed to identifying particular specific patterns of microcalcifications or all microcalcifications, or at least those having specified characteristics such as size or density. This patent specification takes a different approach by not only necessarily seeking to identify and classify patterns of microcalcification distributions in images, or to identify or enhance all microcalcifications detectable in the image, but rather to facilitate the visualization of up to a certain number of selected suspected calcifications that meet various special thresholds in a given image or volume of tissue in ways that are particularly useful to the health professional. Calcifications often have a typical x-ray absorption characteristic, but not all objects with these absorption characteristics are calcifications or are of clinical value. Calcifications of clinical interest generally fall in a certain range of sizes and shapes and patterns. The largest calcifications are often benign. Linear ones also are often benign. Identifying all of the very smallest calcification-like objects runs the risk that some of them might represent noise and not true calcifications or reasonably suspected calcifications. One object of the approach disclosed in this patent specification is to reduce the number of identified possible or suspected calcifications which are of lower clinical value.

As one non-limiting example, the approach disclosed in this patent specification involves examining through computer processing the individual Tr images in a 3D set of such images to identify an initial set of possible calcifications that meets a threshold limiting the number of identified calcifications in a given Tr image, or in the entire 3D set or a selected subset of the entire 3D set, to a specified number of calcifications and/or number of pixels that are determined to correspond to calcifications. Preferably, the Tr images are presented for this examination after filtering with a mask that enhances high spatial frequency image features. The process removes from the initial set, pixels initially determined to relate to calcifications that are too large in area or too long in linear extent, and may additionally impose other constraints such as excluding initially determined calcifications that are not present in two adjacent Tr images, applying ligament removal and edge removal techniques, requiring at least a certain number of calcifications to be in a specified volume of the 3D set, and excluding calcifications that are in the initial and trailing Tr images in a stack of Tr images and thus are likely to be at the skin level and unlikely to have clinical significance. The removal processes are designed to remove calcifications that are likely to be devoid of clinical interest and to remove noise and other non-calcification objects. In displaying the results, one example is to show a scout view that generally conforms in shape to a projection of the breast and shows a distribution of identified calcifications as well as a current level that both (1) includes calcifications and (2) corresponds to a Tr image that is orthogonal to the scout image and is seen at a main image display. Alternatively, this information can be displayed using a ruler or other schematic display that does not conform in shape to a projection of the breast but still allows display of the current level and/or the locations of likely calcifications. Thus, the current level in the 2D scout or schematic view points to one or more corresponding Tr images. The scout or schematic view also shows a pointer to a next level that contains identified calcifications so that a user can conveniently click on that level and thus call on the main display the next Tr image of interest. The scout or schematic view may also indicate how many calcification clusters are in a given Tr image. In addition, the user can toggle the main display between showing a Tr image with or without highlighted calcifications therein. A health professional thus can quickly and effectively review Tr images that are likely to be of interest. The health professional can additionally select for the main display additional Tr images, Tr images that are for thick or thin slices and/or reconstructed in another orientation, Tp images and/or Mp images.

An alternative or additional process is to initially search Tp and/or Mp images rather than the 3D set of Tr images to identify likely calcifications of interest. This can be done using CAD as disclosed in the patent literature incorporated by reference in this patent specification, or by adapting the principles discussed above for identifying calcifications in Tr images and 3D volumes, or in some other manner. After likely calcifications of clinical significance are identified in the 2D Tp and/or Mp images, the 2D images can be displayed one at a time or several at a time, or only those 2D images that have identified calcifications can be displayed. When a user points to a likely calcification in a displayed 2D image, e.g., by a mouse click on the calcification in a 2D image, computer processing can search through the Tr images of the breast to identify and display the Tr image or Tr images that contain that calcification. This search through the Tr images can use knowledge about the location of the likely calcification in the 2D image, on parameters of the calcification such as its size, shape, pixel values and distribution of those values in the 2D image, and possibly other parameters. In case of an ambiguity, i.e., the calcification pointed to in the 2D image appears in two or more Tr images, all possibly relevant Tr images can be displayed to the user, singly or in a set or subsets or in cine mode, and the user may select for further use the ones that appear relevant or dismiss any that are not. This alternative can reduce processing time because the search for likely calcifications in the 2D images can be faster, and the subsequent search for the Tr slice(s) that contain a calcification to which the user pointed in a 2D image also can be faster. One reason for greater computational efficiency is that the 3D data set (the Tr images) need to be processed only after a likely calcification has been selected, so only a relatively small volume of the 3D set would need to be searched. Another advantage of this alternative may be if the search process is more sensitive and/or more accurate for 2D images. If so, then it is more likely to decrease the overall rate of false negatives and/or false positives in identifying likely calcifications, and thus improve the presentation of images to the health professional and make the overall process of assessing the images for screening, diagnosis, or other purposes, more effective and/or more efficient.

As another alternative or additional process, the user can point to any feature in one of the 2D images, not necessarily a likely calcification, even in 2D images that have not been processed to identify likely calcifications, and the process can attempt to identify and display for the user the Tr slice(s) in which that feature can be seen well, e.g., the feature is in best focus. The search through the 3D set of pixel data can use information about the feature to which the user pointed, such as location in the 2D image, size, shape, pixel values and distribution of those values, and possibly other parameters. If the feature is relatively unique and small, the process may correctly identify and display for the user one or only a few Tr slices. In other cases, such as in the case of a relatively large mass, or in the case of a feature in the 2D image that represents a superposition of two or more features in the breast that are along the x-ray beam path to that feature in the 2D image, there may be ambiguities as to which Tr image or images show the feature to which the user has pointed. Again, in such a case the process may similarly display the possibly pertinent Tr slices, or may display only those that meet a threshold of relevance, e.g., based on a calculation of their degree of relevance to the feature to which the user pointed.

The discussion above refers to highlighting calcifications. Other methods of emphasizing calcifications also are possible, and are in the scope of this patent specification. These include pointers such as arrows, circling or drawing lines, and the use of changing the color of the display of the calcification, or other methods of presenting visual cues to the viewer to look at specified areas on the image.+

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 illustrates an example of a display of a scout image and a reconstructed tomosynthesis slice image Tr.

FIG. 2 illustrates in block diagram form a mammography/tomosynthesis system that can be used to acquire breast imaging x-ray data and process and display the data according to preferred embodiments of the approach disclosed in this patent specification.

FIG. 3 is a flowchart illustrating an embodiment of a new process.

FIG. 4 illustrates a method of displaying a current slice and locations of calcifications.

FIG. 5 illustrates a method of identifying calcifications on a tomosynthesis slice image Tr.

DETAILED DESCRIPTION

Referring to FIG. 1, the image on the left is a scout view 10 that generally conforms to an outline of a patient's breast and contains bright dots indicative of calcifications identified through a process described below. Two facing arrows 12 a and 12 b at the side of scout image 10 point to a level in the scout image that corresponds to a reconstructed tomosynthesis slice image Tr 12 seen at the right side of FIG. 1. The views of images 10 and 12 are mutually orthogonal. Tr image 12 in this example has highlighted calcifications (seen as white dots) that are more numerous than those seen in scout image 10, for reasons that will become apparent from the disclosure below. Next to scout image 10 are an arrow 14 that points to the next level up in image 10 that contains calcifications and an arrow 16 that points to the next level below in image 10 that contains calcifications. By clicking on arrow 14 or arrow 16 the user can call for display at 12 the corresponding Tr image. Tr image 12 can be displayed without highlighting its suspected calcifications, as a normal Tr image, by a user command such as clicking a mouse button or through some other interface. The Tr image that is displayed as image 12 can be for a thin slice, e.g., a 1 mm or somewhat thinner or thicker slice of breast tissue, or for a thick slice such as a 3 mm or somewhat thinner or thicker slice of breast tissue, in which case the thick-slice image can be formed by combining several thin slice Tr image through a known process such as, without limitation, adding with or without normalization, MIP projection, etc. Alternatively, data representing Tp images can be reconstructed into data representing thick-slice Tr images in the reconstruction process using known techniques such as using appropriate backprojection or frequency domain filters. The user can click on button 13 a, 13 b and 13 c to toggle display 12 between a Tr image with and without highlighted suspected calcification, or to the previous and next Tr images.

FIG. 4 shows an alternative method to the scout view for identifying slice locations for calcifications. This involves a ruler that indicates both the currently-displayed slice, in terms of its height or position in a stack of Tr images and corresponding slices of breast tissue (using a marker such as the one labeled “Slice position indicator” in FIG. 4), and also Calcification slice indicator marks that show the slices where potential calcifications have been identified (by marks such as the arrows labeled “Calcification slice indicator” in FIG. 4).

FIG. 5 shows an alternative method for identifying calcifications that does not require highlighting them. In this figure, potential calcifications are outlined by a box such as the one labeled “Square indicating calcifications” in FIG. 5. Arrows pointing to the calcifications would be an alternative method, as would other marks and or lines and or color and/or intensity changes on the image in the vicinity of the calcifications.

X-ray data for use in the process disclosed in this patent specification can be acquired, processed, and displayed by the system illustrated in FIG. 2 as a high level integration of sub-systems discussed in greater detail in the documents incorporated by reference in this patent specification. In FIG. 2, an x-ray data acquisition unit 100 includes an x-ray source 110 imaging a patient's breast 112 supported on a breast platform 114. An x-ray imager 116 such as a flat panel, direct conversion imager available from Hologic, Inc. of Bedford, Mass., generates projection image data such as data defining images Mp and/or Tp. X-ray source 110 is mounted for movement around breast platform 114 so that images Tp (and Mp, if desired) can be taken at a number of different angles for a specific orientation of breast platform 114, such as a generally CC orientation or a generally MLO orientation. X-ray imager 116 can be stationary but preferably it also moves relative to breast platform 114, in a specified synchronous relationship to source 110, preferably in a manner that keeps the imaging plane at the same angle to the imaging x-ray beam. Units 110 and 116 communicate with x-ray data acquisition control 118 that controls the operation of the system as known from said material incorporated by reference. X-ray data from imager 116 is delivered to processing and image reconstruction unit 120 that includes one or more programmed digital computers, where data is processed as known into Tp and possibly Mp images and into Tr images and where the process described below is carried out. The resulting information is displayed at image display unit 122. The software for any specific implementation of specific data processing hardware can be written without undue experimentation by a person skilled in the art based on the disclosure of this patent specification. The details of such implementation would depend to a certain extent on factors such as the hardware and operating systems that a particular designer or user would select, and many variations are possible. For the sake of both clarity and conciseness such details that are within the skill of the art once the disclosure herein is available, are not included in this patent specification.

The processing carried out by unit 120 typically includes known filtering and preliminary processing of the Tp image data (and any Mp data used in addition to or instead of Tp image data) and reconstruction of thin and/or thick slice Tr image data that defines a 3D set of pixel values. The 3D set is made up of the pixel values representing an x-ray property of respective pixels of each of a number of Tr images, each Tr image representing a respective slice of breast tissue. Preferably, the Tr images used in steps 1-4 below represent thin slices of the breast, such as 1 mm slices, but using thicker slice images is not excluded. These pixel values are processed in the following principal steps as a non-limiting preferred example following a filtering of the Tr images individually to suppress low spatial frequency components. Any one of a number of known filtering processes can be used, such as a process involving the use of unsharp mask filters.

-   -   1. Compute and use a threshold to form a first provisional set         of pixels that are candidates for inclusion in a final set of         pixels that are determined to be associated with calcifications         and called “calc pixels” below. The objective is to include in         the final set of cafe pixels no more than a selected number N of         pixels for the entire 3D set of pixels defining the Tr images.         For example, candidate calc pixels can be identified in this         step by provisionally identifying as calc pixels the pixels that         have pixel values exceeding a provisional threshold level. This         can be done by processing only the pixel values in one or         several Tr images that may correspond to centrally located         breast tissue, or it can be done for the entire 3D set. As a         non-limiting example, if pixel values in a particular system are         adjusted to range from −60 to +60 units in value in a Tr image         after filtering per step 1 above, any pixel that has a value         greater than, e.g., 40 can be provisionally classified as a calc         pixel in a first iteration. If the total number of candidate         calc pixels found in the Tr image in the first iteration is too         large (as a non-limiting example, more than 150) then the         provisional threshold of 40 is raised, e.g., to 41, and the         process is repeated to provisionally classify as candidate calc         pixel those having pixel values greater than 41. If the initial         iteration yields a total number of calc pixels that is too low         (as a non-limiting example, less than 50) the initial threshold         is lowered, e.g., to 39, and the process is repeated. These         iterations are repeated until the total number of candidate calc         pixels is in the desired range, for example and without         limitation, in the range of 50 to 150 calc pixels for the given         Tr image. The specific initial threshold, the size of the steps         by which it is raised or lowered, and the desired range of total         number of candidate calc pixels can be set depending on user         preferences, either as part of the design process or as a         parameter that can be set by service personnel or by the user of         the system in the field, or on the basis of a study of typical         values for a large population of breast images. This step yields         a first provisional set of calc pixels.     -   2. Form a second provisional set of candidate pixels by         excluding those associated with large areas in a Tr image that         contain contiguous, i.e., connected, or nearly contiguous         candidate calc pixels. As a non-limiting example, exclude from         the first provisional set the candidate calc pixels associated         with areas greater than 0.31 square mm (e.g. an area of about 30         pixels). The test can be for an area of only contiguous pixels         provisionally identified as calc pixels, or it can be for areas         in which any provisionally identified calc pixel is spaced by no         more than one (or a set multiple of) pixels that are not calc         pixels. This removes calcifications that would be clearly         visible, or of little clinical relevance, in a Tr image so there         is no need to point them out to the health professional and,         moreover, if left in the displayed images they might obscure         other, smaller calcification that should be pointed out.     -   3. Form a third provisional set of calc pixels by removing from         the second provisional set the pixels that are generally         arranged in lines that have excessive lengths. These linear         groups of candidate calc pixels may be associated with blood         vessels or other structures that may be of less interest than         other calcifications. For example, a line of contiguous or         nearly contiguous candidate calc pixels that is more than 2-4 mm         long may be considered too long in this step. The term nearly         contiguous is used in this patent specification to denote calc         pixels that might be separated by one (or a set multiple of)         non-calc pixels.     -   4. Form a fourth provisional set of calc pixels by removing from         the third set the candidate calc pixels that do not have as         contiguous neighbors, candidate calc pixels in at least two         adjacent Tr images, as they are likely to be image noise.     -   5. Combine the thin-slice Tr images that still have candidate         calc pixels into thick-slice Tr images to facilitate volume         analysis. As a non-limiting example, add and if desired         normalize, each set of three contiguous Tr images into a         respective thick-slice Tr image by forming a new pixel by adding         the values of three contiguous pixels in a direction transverse         to the planes of the Tr images and dividing the result by three.         As an alternative, combine into a thick-slice Tr image the         several Tr images that contain candidate calc pixels forming in         3D a clump of candidate calc pixels, e.g., a 3D clump of         candidate talc pixels that have at least a specified density         (ratio of all pixels to candidate calc pixels, or the reverse).     -   6. Form a fifth set of candidate calc pixels by removing from         the fourth set the candidate calc pixels that are arranged in         lines that are too long in any direction (e.g. more than 2-4 mm)         in a thick-slice Tr image and, therefore, are likely to be         associated with structures such as ligaments, blood vessels, or         cyst walls.     -   7. Form a sixth set of candidate calc pixels by eliminating from         the fifth set the candidate calc pixels that are not in a set of         at least a specified number of candidate calc pixels in a         specified volume of the 3D set of pixels, e.g., in a volume that         represents a 1 cm by 1 cm by 3 mm volume of the breast, where         the 3 mm is the size of the thick slice Tr image.     -   8. Form a seventh set of candidate calc pixels by eliminating         from the sixth set the candidate calc pixels that are too low in         density in the 3D volume of pixels. For example, eliminate         candidate calc pixels that are in a volume of the 3D set of         pixels of a specified size in which there is too low a ratio         of (a) total number of calc pixels in the volume to (b) the         number of candidate calcs, where a candidate calc consists of         connected calc pixels. As a non-limiting example, a ratio less         than 1.1 in a volume of 1 cm by 1 cm by 3 mm can be considered         too low. This step tends to eliminate candidate calcs that may         represent image noise.     -   9. Form a final set of calc pixels by eliminating from the         seventh set the candidate calc pixels that are in the first and         last set of Tr images, as they are likely to correspond to         pixels related to breast skin. As a non-limiting example, the         candidate calc pixels from the first and last 1-3 Tr images in a         stack of Tr images may be eliminated in this step.     -   10. Project the final set of calc pixels onto an image plane         that is orthogonal to the planes of the Tr images to thereby         form a scout image such as image 10 in FIG. 1. If desired,         enhance the projected calc pixels so that they would stand out         better in image 10. For example, increase the pixel values of         the calc pixels in the final set to a higher value so that they         appear as brighter spots in the scout image and/or increase the         sizes of spots in the scout image that represent determined         calcifications by setting to a higher or highest pixel value the         pixels that are within a specified distance from a calc pixel         that is in the final set.     -   11. Provide user interface and interaction between arrows in the         scout images 10 and Tr images 12 for display as in FIG. 1, for         example by including in display unit 122 appropriate user         interface devices such as a mouse or other pointer to enable the         user to click on selected arrows in image 10 and to make the         system respond to the clicks as described above_([c1]).     -   12. Selectively enhance calcifications in images 12, by         increasing their brightness and/or size, comparable to the         enhancement of the scout image 10 described in step 11 above.     -   13. Provide for user interaction in selecting display of images         12 with or without such enhancement by higher brightness of         pixels representing calcifications in images 12, for example by         including in display unit 122 appropriate user interface devices         such as a mouse or other pointer to enable the user to click on         image 12 or some other display portion to toggle between a Tr         image with or without enhanced calcifications and/or to toggle         between the display of a thin-slice Tr image and the display of         a thick-slice Tr image. For example, a thin-slice Tr image can         represent a 1 mm thick slice of breast tissue while a         thick-slice Tr image can represent a 3 mm or thicker slice of         breast tissue_([c2]).     -   14. Provide for user interaction in selecting display of images         12 with or without such enhancement by higher brightness of         pixels representing calcifications in images 12, by slabbing a         given number of slices to form a thick slice. In slabbing, the         calc pixels may be slabbed independently of the image pixels         that are not identified as calc pixels. The term “slabbing” is         used here in the sense of “combining” or “integrating”         parameters of the pixels of images representing thinner slices         into pixels of an image representing a thicker slice. Various         known slabbing techniques can be used such as averaging with or         without normality after, median, mode, maximum, MIP and/or other         operations for collapsing columns of pixels.     -   15. Provide for user interaction in selecting display of images         12 with or without such enhancement by higher brightness of         pixels representing calcifications in images 12, by slabbing         calc pixels belonging to an identified cluster, where the         slabbed calc pixels are shown on a specified slice. The image         pixels that are not calc pixels, in those slices that contain         calc pixels, may or may not be slabbed.

FIG. 3 illustrates a particular implementation of a process related to the above-described example. The process of FIG. 3 starts with inputting data describing the reconstructed images Tr for a given view, e.g., the Tr images reconstructed from the Tp images taken when the breast is imaged in a position suitable for a CC or an MLO view. The numbered steps discussed below correspond to the blocks of FIG. 3. 3-1. Initialization

The input Tr images are reconstructed images representing breast tissue slices, where the pixel values outside the breast area are constant (i.e., the image has been masked by previous processing). During initialization global parameters are defined, and adjusted for pixel size, and memory is allocated to process the given Mammographic View; which in this case is a Tr image. A global threshold is defined using a specified slice, for example, the center slice in the stack (View) as follows.

-   -   1. From input slice image O_(i), where the subscript refers to         the slice number, create smooth slice image, S_(i) using a 5×5         boxcar filter)     -   2. Create Unsharp mask image U_(i)=O_(i)−S_(i), where the         typical range of values in U_(i) is −60 to +60     -   3. Threshold images U_(i) with fixed initial threshold of 40 to         produce binary image B_(i)         -   B_(i)=0 if U_(i)<40         -   B_(i)=1 if U_(i)>=40     -   4. Label pixels in B_(i) to produce Label image L_(i) (the label         image assigns a unique label to any connected positive value         pixels in B)     -   5. Calculate label density as follows

Labdense=(Nlab/bfrac)

-   -   -   bfrac=# of pixels in breast/total number of pixels         -   Nlab=number of labels         -   Check if Labdense is within a specified fixed range and             adjust the threshold if needed as follows. If             Labdense<LabdenseMin, lower the threshold by 1.0         -   If Labdense>=LabdenseMax, raise the threshold by 1.0         -   Where LabdenseMin=1000 and LabdenseMaz=2500

If Labdense is within the range, return initial threshold. If outside range, iterate steps 3-5, adjusting threshold, until within range. The maximum allowed iterations is 15.

The resultant threshold is used for all subsequent slices. Note that the method for calculating threshold can also be used for each slice separately.

3-2. Locate Candidate Pixels Per Slice

Create Label image for each Tr slice image using steps 1-4 in Section 1. The first and last 3 Tr slice images, near the skin surfaces, are not included in the calculation to rule out skin-calcs.

Subject the label image to the following ‘Cuts’.

-   -   1. Pixel Population Cut         -   Delete labels that have more than Nmax pixels where

Nmax=MaxPixArea/PixSize²

-   -   -   -   PixSize=size of pixels in mm             -   MaxPixArea=0.3 mm²

    -   2. Range Cut         -   a. Calculate the linear extent of labels in x and y         -   b. Delete labels that have an extent (in either direction)             larger than 0.63 mm

    -   3. Boundary Cut         -   a. Delete labels that are close to the breast boundary.             Currently, if a label pixel is within 3 mm of the skin edge,             it is deleted.

Perform the logical AND of the new label image (after being subject to the previous cuts) and previous slice label image L_(i−1) to produce binary image K_(i).

-   -   K_(i)=L_(i) && L_(i−1)

3-3. Slab and Re-Label

The candidate image K_(i) is ‘slabbed’ (as a non-limiting example, added on a per pixel basis) with adjacent slices to give binary Slab image S_(i). The slabbing is per pixel and uses 3 contiguous slices.

$\begin{matrix} {S_{i} = {{1\mspace{14mu} {if}\mspace{14mu} {{SUM}\left( {K_{i - 1},K_{i},K_{i + 1}} \right)}} > 0}} \\ {= {0\mspace{14mu} {otherwise}}} \end{matrix}$

A running sum may be used for efficiency if the Tr slice images are input consecutively. In the running sum method, the first slice of the previous slab is subtracted and the current slice is added to the slab image. S_(i) is then Re-labeled to give new label image M_(i).

3-4. Pre Group Pixel Cuts

Apply additional Cuts to Label image M computed in step 3

4.1 Single Pixel Cut

-   -   Delete single pixel candidates with very low attenuation, i.e.,         on the visual threshold, or possible noise. Let the image pixel         value of M be V_(j) where j is the image pixel index (0<j<Nxy),         and Nxy is the total number of pixels per slice. For each         identified talc pixel j, calculate N_(g) as follows

N _(g)=Σ_(k)(f×{1, if V _(j) >V _(j+k)

-   -   -   0, if V_(j)≦V_(j+k)}

where k={−2,2,2*Nx,−2*Nx,1−Nx,−1−Nx,1+Nx,Nx−1}

-   -   -   f=1.04         -   Nx=number of columns in the image.         -   if N_(g)<8, unset Label pixel j in M.

4.2 Edge Cut

Remove label pixels that are located on edges, e.g., ligaments, artifact edges, breast skin folds.

-   -   1. Search for peaks in pixel intensity along x direction         starting with candidate labeled pixel as center. The search         distance is ±0.8 mm from the center labeled pixel. Extract a         line L of pixel values along the x-dimension with the center         point being a calc pixel. The length of L is 1 mm.         -   2. Calculate the peak (maximum value) and maximum derivative             value, L_(i)−L_(i−1), of L.     -   3. If peak is above a threshold (=30), count as valid peak.     -   4. Repeat steps 2-4 for pixel centers located at ±N         (perpendicular to line L) from the calc pixel, where N=0.8         mm/(pixel size). Sum the number of valid peaks and calculate the         average maximum derivative.     -   5. If number of valid peaks is above the maximum (=1.6 mm/(pixel         size)−1) unset the calc Label pixel in M     -   6. If average maximum derivative is above a threshold (=150),         unset calc Label pixel in M.     -   7. Repeat steps 1-7 searching along the y direction instead         of x. The lines L being along the y-direction.     -   8. Repeat steps 1-8 for all labeled pixels.

3-5. Per Slice Grouping

Apply group (cluster) criteria.

For each Valid label in M_(j) that passed all previous cuts:

-   -   1. Search neighborhood (±5 mm) and sum all Labels. If sum is         greater than 2, assign a group label, otherwise unset Label.         This keeps all clusters of 3 calcs within a 1 mm square.

5.1 Post-Group Cuts

After group Labels have been assigned, apply additional cuts to each group.

-   -   1. Calculate Calc Pixel Density, CPD

CPD=(Number of pixels in group)÷(Number of labels (calcs) in group)

-   -   2. If CPD≧CPD_(min) (=3), do not apply any additional cuts, and         do not delete the group.     -   3. If CPD<CPD_(min) apply the following cuts in order.     -   3.1 If CPD<1.1, delete group. Otherwise proceed with Cut 3.2     -   3.2 Calculate Δ_(nn)

Δ_(nn)=Ave(C)−Ave(N)

-   -   -   Ave(C)=average pixel value of labels in the group.         -   Ave(N)=average pixel value of neighboring pixels (nearest             neighbors of C)

    -   In the average calculations only labels that have less than 3         pixels are considered. If the number of labels used in the         average is greater than 0.6×(total number of labels in group),         apply the following cuts.         -   If (Δ_(nm)<25) delete group         -   If (Δ_(nm)<42 && CPD<1.7) delete group

    -   If group not deleted proceed with Cut 3.3.

    -   3.3 Fit a 3^(rd) order polynomial to the distribution of labels         within the group. If the x-extent of the group is greater than         the y-extent, x is the dependent variable, otherwise y is the         dependent variable. Calculate the normalized chi-squared of the         fit,

Nchi=chi-squared÷Number of points used in fit

-   -   -   If Nchi<0.10 delete group

3-6. Volume Grouping

Regroup the valid labels in the volume (slice stack) such that labeled pixels that are within ±10 mm in x,y, and ±5 mm in z, are in the same group. This connects groups that may exist over several slices and may contain a slice with no labeled pixels. This step combines the previous per slice groups that may overlap (or be close) in the volume.

3-7. Slices of Interest

Calculate the SOI's ‘slices of interest’ for the view. SOI's are those slices which may be used in the Viewing application that will allow the user to quickly scroll the TCE identified slices within a View. A SOI is defined for each identified group as the slice that contains the most labeled pixels in that group. Note that 2 different groups may have the same SOI.

Some other possible methods include:

-   -   1. Finding calcifications using the Tp data, and identifying the         calcification locations on the Tr dataset for display, as         described.     -   2. Finding calcifications using both the Tp and the Tr data, and         identifying the calcification locations on the Tr dataset for         display as described. Using both Tp and Tr may improve the         accuracy or computational efficiency of the calc determination         algorithm_([c3]). Methods for identifying calcifications in Tp         are known, such as shown in the material incorporated by         reference herein. Once potential calcifications in Tp are found,         their possible locations in Tr can be determined through         reconstruction of the locations found in the Tp images, such as         described in the material incorporated by reference herein.     -   3. A similar method can be used to identify possible pathology         masses, and lesions containing both masses and tales. Methods of         identifying possible pathology masses are given in the material,         herein incorporated by reference. An inventive feature here is         the user interface whereby only slices are shown that have         either masses or tales or both. The CAD algorithm can use either         Tr or Tp or both datasets to do its determination.     -   4. In the above-described approach, the display of a given slice         might contain calcifications (or masses) from other slices,         especially if they have been ascertained to be part of the same         cluster. If desired, a different highlighting can be applied to         talcs or masses that also are present in adjacent Tr slices that         are not displayed at the moment.     -   5. Instead of displaying only breast slice images that include         pixels determined to be calcifications, display all breast slice         images or at least a subset of all breast slice images,         including some that do not have such pixels, such that the user         can scroll through those images. The user can be helped to         identify the calc pixels, particularly if their brightness is         enhanced as discussed above, by the sudden change in brightness         in scrolling from one displayed slice image to the next or help         can be provided by marking the talc, e.g. with some symbol.         The_([c7]) change from one slice image to another can be         directed manually by the user, or the display can be automated         to present the succession of slice images in cine format.     -   6. Instead of or in addition to identifying calcs, the process         can be adapted to identify masses using for example CAD         techniques such as those described in the material incorporated         in this patent specification by reference. Suspected         abnormalities can then be selectively specified to be (1) only         calcifications, (2) only masses, and (3) both calcifications and         masses. The selection and display of masses can then be similar         to the selection and display of calcifications described above.     -   7. Instead of the process described above to identify         abnormalities corresponding to suspected calcifications, a         simpler process can be used such as a filter that identifies all         pixels in a Tp and/or Tr image that meet specified threshold         criteria of pixel values selected to identify pixels likely to         correspond to calcifications. Known techniques can be used to         eliminate from an initial cut those abnormalities that are         likely to represent noise, such as isolated single pixels that         meet the threshold criteria or very small groups of such pixels.         The remaining suspected abnormalities can then be displayed as         described above.

An alternative or additional process involves finding likely calcification in the individual 2D Tp and/or Mp images and then searching only subsets of the 3D Tr images to select corresponding Tr images for selective display to the user. This can be implemented by initially searching Tp and/or Mp images rather than the 3D set of Tr images to identify likely calcifications of interest. The initial search of 2D images can be done using CAD as disclosed in the patent literature incorporated by reference in this patent specification, or by adapting the principles discussed above for identifying calcifications in Tr images and 3D volumes, or in some other manner. After likely calcifications of clinical significance are identified in the 2D Tp and/or Mp images, the 2D images can be displayed one at a time or several at a time, or only those 2D images that have identified calcifications can be displayed. When a user points to a likely calcification in a displayed 2D image, e.g., by a mouse click on the calcification in a 2D image, computer processing can search through the Tr images of the breast to identify and display the Tr image or Tr images that contain that calcification. This search through the Tr images can use knowledge about the location of the likely calcification in the 2D image, on parameters of the calcification such as its size, shape, pixel values and distribution of those values in the 2D image, and possibly other parameters. In case of an ambiguity, i.e., the calcification pointed to in the 2D image appears in two or more Tr images, all possibly relevant Tr images can be displayed to the user, singly or in a set or subsets or in cine mode, and the user may select for further use the ones that appear relevant or dismiss any that are not. This alternative can reduce processing time because the search for likely calcifications in the 2D images can be faster, and the subsequent search for the Tr slice(s) that contain a calcification to which the user pointed in a 2D image also can be faster. One reason for greater computational efficiency is that the 3D data set (the Tr images) need to be processed only after a likely calcification has been selected, so only a relatively small volume of the 3D set would need to be searched. Another advantage of this alternative may be if the search process is more sensitive and/or more accurate for 2D images. If so, then it is more likely to decrease the overall rate of false negatives and/or false positives in identifying likely calcifications, and thus improve the presentation of images to the health professional and make the overall process of assessing the images for screening, diagnosis, or other purposes, more effective and/or more efficient.

As another alternative or additional process, the user can point to any feature in one of the 2D images, not necessarily a likely calcification, even in 2D images that have not been processed to identify likely calcifications, and the process can attempt to identify and display for the user the Tr slice(s) in which that feature can be seen well, e.g., the feature is in best focus. The search through the 3D set of pixel data can use information about the feature to which the user pointed, such as location in the 2D image, size, shape, pixel values and distribution of those values, and possibly other parameters. If the feature is relatively unique and small, the process may correctly identify and display for the user one or only a few Tr slices. In other cases, such as in the case of a relatively large mass, or in the case of a feature in the 2D image that represents a superposition of two or more features in the breast that are along the x-ray beam path to that feature in the 2D image, there may be ambiguities as to which Tr image or images show the feature to which the user has pointed. Again, in such a case the process may similarly display the possibly pertinent Tr slices, or may display only those that meet a threshold of relevance, e.g., based on a calculation of their degree of relevance to the feature to which the user pointed.

The examples described above are only illustrative and other examples also are encompassed within the scope of the appended claims. The parameters given as example above, such as initial thresholds, sizes of areas or volumes, etc. can be modified by those skilled in the art without departing from the invention described in the appended claims. Other variations can be introduced without departing from the spirit of the disclosure or from the scope of the appended claims. For example, elements and/or features of different illustrative embodiments may be combined with each other and/or substituted for each other, and the steps of the example described in detail above can be rearranged and steps can be omitted or added within the scope of this disclosure and appended claims. 

1-35. (canceled)
 36. A method of obtaining and displaying x-ray images of a patient's breast comprising: obtaining x-ray tomosynthesis image data Tp representative of projection images Tp taken at different angles of an origin of imaging x-rays relative to a patient's breast; computer-processing at least a subset of the Tp data into reconstructed tomosynthesis image data Tr representative of reconstructed tomosynthesis images Tr of slices of the breasts that have respective selected orientations and thicknesses; identifying an anatomical feature in one of said images that meets selected criteria of size, location and other properties; and computer-processing said reconstructed tomosynthesis image data Tr to select a tomosynthesis image Tr in which said anatomical feature is seen well; and displaying on a computer display the selected tomosynthesis image Tr in which said anatomical feature is seen well.
 37. The method of claim 36 in which said computer-processing of said reconstructed tomosynthesis image data Tr further comprises selecting one or more additional images Tr that show the anatomical feature well, and said displaying further comprises displaying said one or more additional images Tr that show said anatomical feature well.
 38. The method of claim 37 in which said displaying of one or more additional images Tr comprises computer-processing said one or more additional images Tr and displaying only those of the additional images Tr that that meet selected threshold of relevance to the anatomical feature.
 39. The method of claim 37 in which said displaying comprises displaying each of said one or more additional Tr images.
 40. The method of claim 37 in which the displaying comprises displaying the feature in a direction that is not parallel to a plane of a concurrently displayed Tr image.
 41. The method of claim 36 in which said identifying an anatomical feature in one of said images comprises identifying the feature in one of said projection images Tp.
 42. The method of claim 36 in which said computer-processing to select a tomosynthesis image Tr in which said anatomical feature is seen well comprises selecting the image Tr in which the feature is in best focus.
 43. The method of claim 36 in which said identifying an anatomical feature comprises a computer response to a user pointing to the feature in one of said images.
 44. The method of claim 36 in which said anatomical feature is a likely calcification.
 45. The method of claim 36 in which said computer-processing the image data Tr to select an image Tr comprises searching the image data Tr based on parameters of the feature in the image in which the feature is identified including location of the feature therein, size and shape of the feature therein, and pixel values related to the feature therein and distribution of said pixel values.
 46. The method of claim 36 in which the anatomical feature is a suspected abnormality.
 47. The method of claim 46 in which the identifying comprises identifying the suspected abnormality through computer processing of at least some of said image data.
 48. The method of claim 47 in which said displaying comprises displaying a representation of said suspected abnormality in a scout view projection on an image plane that is angled relative to that of a concurrently displayed Tr image.
 49. The method of claim 48 including displaying at least an indication of level in the scout view of a location of a concurrently displayed Tr image.
 50. The method of claim 36 in which said obtaining x-ray tomosynthesis image data Tp comprises using an x-ray data acquisition system projecting imaging x-rays from a plurality of different directions through the patient's breast to generate respective projection images Tp taken at different angles of the imaging x-rays relative to a patient's breast;
 51. A method of obtaining and displaying x-ray images comprising: obtaining two-dimensional (2D) x-ray image data of a patient's breast, including tomosynthesis images data Tp representative of projection images Tp taken at different angles of an origin of imaging x-rays relative to the breast; computer-processing at least a subset of the 2D x-ray image data into reconstructed tomosynthesis image data Tr representative of images Tr of slices of the breasts that have selected orientations and thicknesses that are several mm for each of at least some of the slices; selectively displaying one or more 2D images based on at least of subset of said 2D image data and identifying, at least in part through computer processing of at least some of said 2D images, one or more features in the displayed 2D images in response to user designation of said one or more features; and automatically identifying and displaying under user control a Tr image showing the one or more features identified in said displayed 2D images.
 52. The method as in claim 51 in which the one or more features are suspected abnormalities identified through computer analysis of at least some of said images.
 53. The method of claim 52 in which said abnormalities are calcifications included in a set in which the number of calcification in the patient's breast does not exceed a selected threshold.
 54. The method as in claim 51 in which said obtaining comprises imaging the patient's breast with x-rays.
 55. A computer program product embodied in a computer-readable information storage device in a non-transitory form and containing instructions to a processing system to: receive information describing projection x-ray images of a patient's breast acquired at different angles and reconstruct breast slice images in a reconstruction process using at least the projection images; identify pixels in the projection and/or reconstructed images that correspond to features in breast tissue identified by a user interacting with a computer interface; process the identified pixels to facilitate visualization of at least a subset of the identified pixels in a display, and deliver information describing for display slice images containing at least said subset of the identified pixels for screening and/or diagnosis by a user. 